Self-Supervised Multi-Modality Learning for Multi-Label Skin Lesion Classification
Hao Wang, Euijoon Ahn, Lei Bi, Jinman Kim

TL;DR
This paper introduces a self-supervised learning approach for multi-modality skin lesion classification, leveraging paired dermoscopic and clinical images, pseudo-labels for attributes, and a label-relation module, reducing reliance on large labeled datasets.
Contribution
The paper presents a novel SSL algorithm that utilizes paired multi-modality images and pseudo-labels with a label-relation module for improved skin lesion classification.
Findings
Outperforms state-of-the-art SSL methods on skin lesion datasets.
Effectively captures interrelationships between visual attributes.
Reduces dependence on large annotated datasets.
Abstract
The clinical diagnosis of skin lesion involves the analysis of dermoscopic and clinical modalities. Dermoscopic images provide a detailed view of the surface structures whereas clinical images offer a complementary macroscopic information. The visual diagnosis of melanoma is also based on seven-point checklist which involves identifying different visual attributes. Recently, supervised learning approaches such as convolutional neural networks (CNNs) have shown great performances using both dermoscopic and clinical modalities (Multi-modality). The seven different visual attributes in the checklist are also used to further improve the the diagnosis. The performances of these approaches, however, are still reliant on the availability of large-scaled labeled data. The acquisition of annotated dataset is an expensive and time-consuming task, more so with annotating multi-attributes. To…
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Taxonomy
TopicsCutaneous Melanoma Detection and Management
